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首页> 外文期刊>International journal of electrical power and energy systems >Spatio-temporal information based protection scheme for PV integrated microgrid under solar irradiance intermittency using deep convolutional neural network
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Spatio-temporal information based protection scheme for PV integrated microgrid under solar irradiance intermittency using deep convolutional neural network

机译:使用深卷积神经网络的太阳辐照区间间隔的PV集成微电网基于时空信息的保护方案

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摘要

PV integrated microgrids are characterized by increased intermittency because of the uncertainty in solar irradiance level. In an islanded mode, the irradiance variation significantly affects the current profile both during the healthy and faulty scenario, thereby increasing the risk of maloperation of conventional relays based on threshold settings. A fault-resilient and reliable microgrid demands the development of a protection scheme, which is robust to varying irradiance levels. In this regard, this paper proposes a protection scheme based on Convolutional neural network (ConvNet) approach of deep learning for fault detection/classification, section identification and location during islanded mode. The use of ConvNet allows identifying discriminatory attributes from complex datasets with reduced computational cost. The time-domain voltage and current signals retrieved from the relaying bus post-fault are fed as input to the respective ConvNets trained to perform the intended tasks of classification and regression. The uncertainty in irradiance has been incorporated by modeling irradiance levels over a period using probability distribution function (PDF). The incorporation of spatio-temporal data-based distribution function within the framework of spatial data based ConvNet allows for improved mapping between the multi-domain data and state of the microgrid. The performance of the proposed technique under varying irradiance and fault scenarios has been analyzed through statistical indices and Monte-Carlo simulations. Further, the appropriateness of proposed technique has also been validated for real-time setting using the OPAL-RT digital simulator.
机译:由于太阳辐照度水平的不确定性,PV集成微电网的特征在于间歇性增加。在岛屿模式中,辐照度变化在健康和错误的情况下显着影响当前的轮廓,从而基于阈值设置增加了传统继电器误操作的风险。一个故障 - 弹性和可靠的微电网要求开发保护方案,这对不同的辐照度水平强大。在这方面,本文提出了一种基于卷积神经网络(ConvNet)的保护方案,用于深度学习的故障检测/分类,部分识别和岛屿模式。 GROMNET的使用允许从复杂数据集中识别具有减少计算成本的复杂数据集的歧视属性。从中继总线检索的时域电压和电流信号被馈送为培训的各个探测的相应探测器以执行分类和回归的预期任务。通过使用概率分布函数(PDF)在一段时间内建模辐照度水平来纳入辐照度的不确定性。在基于空间数据的ConvNet的框架内的结合在空间数据的框架内允许改进的多域数据和微电网的状态之间的改进映射。通过统计指数和Monte-Carlo模拟分析了在不同辐照度和故障情景下进行了建议技术的性能。此外,使用欧宝-TT-RT数字模拟器的实时设置还验证了所提出的技术的适当性。

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